A novel deep learning method for maize disease identification based on small sample-size and complex background datasets

Maize diseases are a major source of yield loss, but due to the lack of human experience and limitations of traditional image-recognition technology, obtaining satisfactory large-scale identification results of maize diseases are difficult. Fortunately, the advancement of deep learning-based technol...

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Bibliographic Details
Published inEcological informatics Vol. 75; p. 102011
Main Authors Li, Enlin, Wang, Liwei, Xie, Qiuju, Gao, Rui, Su, Zhongbin, Li, Yonggang
Format Journal Article
LanguageEnglish
Published Elsevier B.V 01.07.2023
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Summary:Maize diseases are a major source of yield loss, but due to the lack of human experience and limitations of traditional image-recognition technology, obtaining satisfactory large-scale identification results of maize diseases are difficult. Fortunately, the advancement of deep learning-based technology makes it possible to automatically identify diseases. However, it still faces issues caused by small sample sizes and complex field background, which affect the accuracy of disease identification. To address these issues, a deep learning-based method was proposed for maize disease identification in this paper. DenseNet121 was used as the main extraction network and a multi-dilated-CBAM-DenseNet (MDCDenseNet) model was built by combining the multi-dilated module and convolutional block attention module (CBAM) attention mechanism. Five models of MDCDenseNet, DenseNet121, ResNet50, MobileNetV2, and NASNetMobile were compared and tested using three kinds of maize leave images from the PlantVillage dataset and field-collected at Northeast Agricultural University in China. Furthermore, auxiliary classifier generative adversarial network (ACGAN) and transfer learning were used to expand the dataset and pre-train for optimal identification results. When tested on field-collected datasets with a complex background, the MDCDenseNet model outperformed compared to these models with an accuracy of 98.84%. Therefore, it can provide a viable reference for the identification of maize leaf diseases collected from the farmland with a small sample size and complex background. •Multi-scale and attention modules are used to extract disease features.•The optimized ACGAN model is used as a data augmentation method.•MDCDenseNet can achieve 98.84% accuracy under complex backgrounds.•MDCDenseNet is lightweight and can be applied to mobile devices.
ISSN:1574-9541
DOI:10.1016/j.ecoinf.2023.102011